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Machine learning analysis of serum biomarkers for cardiovascular risk assessment in chronic kidney disease

机译:慢性肾病心血管风险评估血清生物标志物的机器学习分析

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Background Chronic kidney disease (CKD) patients show an increased burden of atherosclerosis and high risk of cardiovascular events (CVEs). There are several biomarkers described as being associated with CVEs, but their combined effectiveness in cardiovascular risk stratification in CKD has not been tested. The objective of this work is to analyse the combined ability of 19 biomarkers associated with atheromatous disease in predicting CVEs after 4?years of follow-up in a subcohort of the NEFRONA study in individuals with different stages of CKD without previous CVEs. Methods Nineteen putative biomarkers were quantified in 1366 patients (73 CVEs) and their ability to predict CVEs was ranked by random survival forest (RSF) analysis. The factors associated with CVEs were tested in Fine and Gray (FG) regression models, with non-cardiovascular death and kidney transplant as competing events. Results RSF analysis detected several biomarkers as relevant for predicting CVEs. Inclusion of those biomarkers in an FG model showed that high levels of osteopontin, osteoprotegerin, matrix metalloproteinase-9 and vascular endothelial growth factor increased the risk for CVEs, but only marginally improved the discrimination obtained with classical clinical parameters: concordance index 0.744 (95% confidence interval 0.609–0.878) versus 0.723 (0.592–0.854), respectively. However, in individuals with diabetes treated with antihypertensives and lipid-lowering drugs, the determination of these biomarkers could help to improve cardiovascular risk estimates. Conclusions We conclude that the determination of four biomarkers in the serum of CKD patients could improve cardiovascular risk prediction in high-risk individuals.
机译:背景技术慢性肾病(CKD)患者患者增加了动脉粥样硬化和心血管事件的高风险(CVE)。有几种与CVES相关的生物标志物,但它们在CKD中的心血管风险分层中的组合效果尚未得到测试。这项工作的目的是分析19个生物标志物的综合能力,其与滴注症相关的能力在预测岩石中预测4岁以下的患者在Nefrona在没有先前CVES的不同阶段的个体中进行的。方法在1366名患者(73只CVES)中量化了1946次推定的生物标志物,其预测CVES的能力被随机存活林(RSF)分析排名。与CVES相关的因素以精细和灰色(FG)回归模型测试,具有非心血管死亡和肾移植作为竞争事件。结果RSF分析检测到几种与预测CVE相关的生物标志物。将这些生物标志物包含在FG模型中表明,高水平的骨桥蛋白,骨质蛋白酶,基质金属蛋白酶-9和血管内皮生长因子增加了CVES的风险,而且只有在经典临床参数中获得的歧视:一致性指数0.744(95%置信区间0.609-0.878)分别与0.723(0.592-0.854)。然而,在患有患有抗高血压和降脂药物治疗的糖尿病的个体中,这些生物标志物的测定可以有助于改善心血管风险估算。结论我们得出结论,CKD患者血清中四种生物标志物的测定可以改善高危人体的心血管风险预测。

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